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Machine learning identifies individuals at higher risk of incident cardio-renal-metabolic diseases and cardiovascular death who have unrealised opportunities to reduce future cardiovascular risk

Topic: Cardiovascular Risk Assessment

Congress Presentation

About the speaker

Doctor Mohammad Haris

University of Leeds, Leeds (United Kingdom of Great Britain & Northern Ireland)
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8 more presentations in this session

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Speaker: Miss K. Tsarapatsani (Ioannina, GR)

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The association between cardiovascular health and physiologic age as determined by artificial intelligence-enabled electrocardiography

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Access the full session

Machine learning in preventive cardiology

Speakers: Doctor M. Haris, Doctor F. Fan, Miss K. Tsarapatsani, Doctor L. Ortega Aviles, Doctor M. Naghavi...
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About the event

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ESC Congress 2024

30 August - 2 September 2024

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